Competitive interactions are important predictors of tree growth. Spatial and temporal changes in resource availability, and variation in species and spatial patterning of trees alter competitive interactions, thus affecting tree growth and, hence, biomass. Competition indices are used to quantify the level of competition among trees. As these indices are normally computed only over small areas, where field measurements are done, it would be useful to have a tool to predict them over large areas. On this regard, remote sensing, and in particular light detection and ranging (lidar) data, could be the perfect tool. The objective of this study was to use lidar metrics to predict competition (on the basis of distance-dependent competition indices) of individual trees and to relate them with tree aboveground biomass (AGB). The selected study area was a mountain forest area located in the Italian Alps. The analyses focused on the two dominant species of the area: Silver fir (Abies alba Mill.) and Norway spruce (Picea abies (L.) H. Karst). The results showed that lidar metrics could be used to predict competition indices of individual trees (R2 above 0.66). Moreover, AGB decreased as competition increased, suggesting that variations in the availability of resources in the soil, and the ability of plants to withstand competition for light may influence the partitioning of biomass

Versace, S.; Gianelle, D.; Frizzera, L.; Tognetti, R.; Garfì, V.; Dalponte, M. (2019). Prediction of competition indices in a Norway spruce and silver fir-dominated forest using Lidar data. REMOTE SENSING, 11 (23): 2734. doi: 10.3390/rs11232734 handle: http://hdl.handle.net/10449/58281

Prediction of competition indices in a Norway spruce and silver fir-dominated forest using Lidar data

Versace, S.
Primo
;
Gianelle, D.;Frizzera, L.;Tognetti, R.;Dalponte, M.
Ultimo
2019-01-01

Abstract

Competitive interactions are important predictors of tree growth. Spatial and temporal changes in resource availability, and variation in species and spatial patterning of trees alter competitive interactions, thus affecting tree growth and, hence, biomass. Competition indices are used to quantify the level of competition among trees. As these indices are normally computed only over small areas, where field measurements are done, it would be useful to have a tool to predict them over large areas. On this regard, remote sensing, and in particular light detection and ranging (lidar) data, could be the perfect tool. The objective of this study was to use lidar metrics to predict competition (on the basis of distance-dependent competition indices) of individual trees and to relate them with tree aboveground biomass (AGB). The selected study area was a mountain forest area located in the Italian Alps. The analyses focused on the two dominant species of the area: Silver fir (Abies alba Mill.) and Norway spruce (Picea abies (L.) H. Karst). The results showed that lidar metrics could be used to predict competition indices of individual trees (R2 above 0.66). Moreover, AGB decreased as competition increased, suggesting that variations in the availability of resources in the soil, and the ability of plants to withstand competition for light may influence the partitioning of biomass
Airborne lidar
Remote sensing
Modelling
Individual-based competition indices
Competition–biomass relationship
Settore AGR/05 - ASSESTAMENTO FORESTALE E SELVICOLTURA
2019
Versace, S.; Gianelle, D.; Frizzera, L.; Tognetti, R.; Garfì, V.; Dalponte, M. (2019). Prediction of competition indices in a Norway spruce and silver fir-dominated forest using Lidar data. REMOTE SENSING, 11 (23): 2734. doi: 10.3390/rs11232734 handle: http://hdl.handle.net/10449/58281
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